Efficiency of Identification of Blackcurrant Powders Using Classifier Ensembles

cris.virtual.author-orcid0000-0002-2535-8370
cris.virtual.author-orcid0000-0001-5294-5928
cris.virtual.author-orcid0000-0002-0153-4624
cris.virtualsource.author-orcid898dc715-0fc1-42af-a4d7-0bc909752fee
cris.virtualsource.author-orcida601ceea-78eb-4557-8764-5fdee917dd97
cris.virtualsource.author-orcid4ddc81ce-066b-4d2e-a9f3-015a6c34a525
dc.abstract.enIn the modern times of technological development, it is important to select adequate methods to support various food and industrial problems, including innovative techniques with the help of artificial intelligence (AI). Effective analysis and the speed of algorithm implementation are key points in assessing the quality of food products. Non-invasive solutions are being sought to achieve high accuracy in the classification and evaluation of various food products. This paper presents various machine learning algorithm architectures to evaluate the efficiency of identifying blackcurrant powders (i.e., blackcurrant concentrate with a density of 67 °Brix and a color coefficient of 2.352 (E520/E420) in combination with the selected carrier) based on information encoded in microscopic images acquired via scanning electron microscopy (SEM). Recognition of blackcurrant powders was performed using texture feature extraction from images aided by the gray-level co-occurrence matrix (GLCM). It was evaluated for quality using individual single classifiers and a metaclassifier based on metrics such as accuracy, precision, recall, and F1-score. The research showed that the metaclassifier, as well as a single random forest (RF) classifier most effectively identified blackcurrant powders based on image texture features. This indicates that ensembles of classifiers in machine learning is an alternative approach to demonstrate better performance than the existing traditional solutions with single neural models. In the future, such solutions could be an important tool to support the assessment of the quality of food products in real time. Moreover, ensembles of classifiers can be used for faster analysis to determine the selection of an adequate machine learning algorithm for a given problem.
dc.affiliationWydział Nauk o Żywności i Żywieniu
dc.affiliation.instituteKatedra Mleczarstwa i Inżynierii Procesowej
dc.affiliation.instituteKatedra Fizyki i Biofizyki
dc.affiliation.instituteKatedra Technologii Żywności Pochodzenia Roślinnego
dc.contributor.authorPrzybył, Krzysztof
dc.contributor.authorWalkowiak, Katarzyna
dc.contributor.authorKowalczewski, Przemysław Łukasz
dc.date.access2024-07-09
dc.date.accessioned2024-07-09T12:17:51Z
dc.date.available2024-07-09T12:17:51Z
dc.date.copyright2024-02-24
dc.date.issued2024
dc.description.abstract<jats:p>In the modern times of technological development, it is important to select adequate methods to support various food and industrial problems, including innovative techniques with the help of artificial intelligence (AI). Effective analysis and the speed of algorithm implementation are key points in assessing the quality of food products. Non-invasive solutions are being sought to achieve high accuracy in the classification and evaluation of various food products. This paper presents various machine learning algorithm architectures to evaluate the efficiency of identifying blackcurrant powders (i.e., blackcurrant concentrate with a density of 67 °Brix and a color coefficient of 2.352 (E520/E420) in combination with the selected carrier) based on information encoded in microscopic images acquired via scanning electron microscopy (SEM). Recognition of blackcurrant powders was performed using texture feature extraction from images aided by the gray-level co-occurrence matrix (GLCM). It was evaluated for quality using individual single classifiers and a metaclassifier based on metrics such as accuracy, precision, recall, and F1-score. The research showed that the metaclassifier, as well as a single random forest (RF) classifier most effectively identified blackcurrant powders based on image texture features. This indicates that ensembles of classifiers in machine learning is an alternative approach to demonstrate better performance than the existing traditional solutions with single neural models. In the future, such solutions could be an important tool to support the assessment of the quality of food products in real time. Moreover, ensembles of classifiers can be used for faster analysis to determine the selection of an adequate machine learning algorithm for a given problem.</jats:p>
dc.description.accesstimeat_publication
dc.description.bibliographyil., bibliogr.
dc.description.financepublication_nocost
dc.description.financecost0,00
dc.description.if4,7
dc.description.number5
dc.description.points100
dc.description.reviewreview
dc.description.versionfinal_published
dc.description.volume13
dc.identifier.doi10.3390/foods13050697
dc.identifier.issn2304-8158
dc.identifier.urihttps://sciencerep.up.poznan.pl/handle/item/1582
dc.identifier.weblinkhttps://www.mdpi.com/2304-8158/13/5/697
dc.languageen
dc.relation.ispartofFoods
dc.relation.pagesart. 697
dc.rightsCC-BY
dc.sciencecloudsend
dc.share.typeOPEN_JOURNAL
dc.subject.enmachine learning
dc.subject.enclassifiers ensembles
dc.subject.enmetaclassifier
dc.subject.enrandom forest (RF)
dc.subject.engray-level co-occurrence matrix (GLCM)
dc.subject.entexture
dc.subject.enblackcurrant powders
dc.titleEfficiency of Identification of Blackcurrant Powders Using Classifier Ensembles
dc.typeJournalArticle
dspace.entity.typePublication
oaire.citation.issue5
oaire.citation.volume13